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Editorial Team
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Editorial Team
Asked: June 2, 20262026-06-02T01:09:34+00:00 2026-06-02T01:09:34+00:00

I want to do parallel reduction, but inside my kernel with data in shared

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I want to do parallel reduction, but inside my kernel with data in shared memory. Is this possible with thrust library ?
Something like

int sum = thrust::reduce(myIntArray, myIntArray+numberOfItems, (int) 0, thrust::max_element<int>());

But this doesn’t work inside kernel. Is it possible? Thank you.

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  1. Editorial Team
    Editorial Team
    2026-06-02T01:09:36+00:00Added an answer on June 2, 2026 at 1:09 am

    No, thrust::reduce() is a host function that results in the execution of CUDA kernels if the data is on the GPU.

    You would have to dig into the thrust source and find the __device__ functions it uses for reduction. Those would be callable from your kernel. If the logic for reduction is contained in other __global__ kernels, you’ll have to piece it together manually in order to use it.

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